Rainfall forecast using SARIMA model along the coastal areas of Sindh Province

Noor Fatima, Aamir Alamgir, M. Khan
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Abstract

Rainfall forecasting is critical for economic activities such as agriculture, watershed management, and flood control. It requires mathematical modelling and simulation. This paper investigates the time series analysis and forecasting of the monthly rainfall for the Sindh coastline, Pakistan. The seasonal autoregressive integrated moving average (SARIMA) model was used for the last three decades (1991-2020) and forecasting was done for the next two years. The model is based on the Box Jenkins methodology. The decomposition of time series plots into trend, seasonal and random components showed a seasonal effect. The Augmented Dickey–Fuller (ADF) and Mann–Kendall (MK) tests showed the inherent stationarity of the rainfall data. The best SARIMA models for monthly rainfall were SARIMA (1,0,1)(3,1,1)12 and SARIMA (1,0,1)(1,1,1)12 with Akaike information criterion corrected (AICC) values of 1507 and 1387, respectively. The model predictions indicate that, in the years 2021/22, July will likely have the most rainfall, followed by August and June. The diagnostic statistical test values directed that the adequacy of the models is consistent for projected monthly rainfall forecasts.
利用SARIMA模式对信德省沿海地区进行降雨预报
降雨预报对农业、流域管理和防洪等经济活动至关重要。它需要数学建模和仿真。本文研究了巴基斯坦信德省海岸线月降水的时间序列分析与预报。采用季节性自回归综合移动平均(SARIMA)模式对近30年(1991-2020年)进行了预测,并对未来两年进行了预测。该模型基于Box Jenkins方法。将时间序列图分解为趋势分量、季节分量和随机分量均表现出季节效应。增强型Dickey-Fuller (ADF)和Mann-Kendall (MK)检验表明降水数据具有内在的平稳性。月降水的最佳SARIMA模型为SARIMA(1,0,1)(3,1,1)12和SARIMA(1,0,1)(1,1,1)12,校正后的Akaike信息准则(AICC)值分别为1507和1387。模型预测表明,在2021/22年,7月的降雨量可能最多,其次是8月和6月。诊断性统计检验值表明,模型的充分性与预估的月降雨量预报一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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